In situ unsupervised learning using stochastic switching in magneto-electric magnetic tunnel junctions

Author:

Chakraborty Indranil1ORCID,Agrawal Amogh1,Jaiswal Akhilesh1,Srinivasan Gopalakrishnan1,Roy Kaushik1ORCID

Affiliation:

1. School of Electrical and Computer Engineering, Purdue University, 465, Northwestern Ave, West Lafayette, IN 47906, USA

Abstract

Spiking neural networks (SNNs) offer a bio-plausible and potentially power-efficient alternative to conventional deep learning. Although there has been progress towards implementing SNN functionalities in custom CMOS-based hardware using beyond Von Neumann architectures, the power-efficiency of the human brain has remained elusive. This has necessitated investigations of novel material systems which can efficiently mimic the functional units of SNNs, such as neurons and synapses. In this paper, we present a magnetoelectric–magnetic tunnel junction (ME-MTJ) device as a synapse. We arrange these synapses in a crossbar fashion and perform in situ unsupervised learning. We leverage the capacitive nature of write-ports in ME-MTJs, wherein by applying appropriately shaped voltage pulses across the write-port, the ME-MTJ can be switched in a probabilistic manner. We further exploit the sigmoidal switching characteristics of ME-MTJ to tune the synapses to follow the well-known spike timing-dependent plasticity (STDP) rule in a stochastic fashion. Finally, we use the stochastic STDP rule in ME-MTJ synapses to simulate a two-layered SNN to perform image classification tasks on a handwritten digit dataset. Thus, the capacitive write-port and the decoupled-nature of read-write path of ME-MTJs allow us to construct a transistor-less crossbar, suitable for energy-efficient implementation of in situ learning in SNNs. This article is part of the theme issue ‘Harmonizing energy-autonomous computing and intelligence’.

Funder

Intel Corporation

Semiconductor Research Corporation

Defense Advanced Research Projects Agency

National Science Foundation

Vannevar Bush Faculty Fellowship

Publisher

The Royal Society

Subject

General Physics and Astronomy,General Engineering,General Mathematics

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5. Deep learning

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